I am intending to skip some histograms of an image in the extreme points of the distribution of any gray image. The extreme points to the left are represented by all the histograms lying in the region of 5%, and to the right are represented by all histograms in a region above 95% of the whole distribution Here are some codes to where I ended
image = cv2.imread('right.'+str(i)+'.png')
#print(image)
hist = cv2.calcHist([image], [0], None, [256], [0,256])
lower = round(0.05*len(hist))
upper = round(0.95*len(hist))
lower_hist_list = hist[0:lower]
upper_hist_list = hist[upper:len(hist)]
lower_hist, upper_hist
remaining_region =hist[index_above_lower : index_before_upper]
what I want is the histograms between the lower and upper boundaries 5%<=IMAGE<=95%?
imadjust
with stretchlim? Or, do you mean finding the lower and upper percentile of the image using the histogram - computing numpy.percentile using a given histogram? Or do you mean the interpretation of the answer below?